Methodology for Consequence Analysis of Future Mobility Scenarios: The SPROUT Framework
Abstract
:1. Introduction
2. Methodology and Scope
- Identification of the urban mobility elements or else called “consequence areas” that could be affected following any change in any sustainability area of the current urban mobility environment, meaning the Economy, the Environment, and the Society. For the implementation of this step, extensive literature review through different types of publications has been implemented (i.e., journal and conference articles, research reports and official policy documents and EU communications).
- Definition of the possible measurable consequence indicators for assessing the different aspects within each consequence area identified. For the implementation of this step, extensive literature review through mainly scientific publications has been implemented.
- Implementation of expert’s focus groups and prioritization techniques for identifying the most crucial consequences for the five European cities.
- Development of the “Continuum of Performance” for each consequence indicator and finalizing a customized online questionnaire per each city and per each future mobility scenario. For the implementation of this step, extensive literature review through multiple sources was carried out: scientific publications, websites, research reports etc.
3. Results
3.1. Building the Conceptual Assessment Framework of SPROUT’s Future Mobility Scenarios
3.1.1. Identification of the Main Consequence Areas and Correspondent Consequence Indicators
3.1.2. Prioritization Techniques for Identifying the Most Crucial Consequences for the Five European Cities
- Developing the prioritization matrix by determining the main assessment criteria and their rating scale;
- Circulating the matrix to the research experts involved, collecting their answers and developing the master list of prioritized Cis.
- Criterion 1: How difficult is estimating the indicator’s future state? This criterion strengthens the feasibility of the survey and reassures the accuracy of the outcomes by excluding these indicators for which it is not possible to estimate their future state.
Criterion 1 | Rating Scale | ||||
Estimating the indicator’s future state is | not possible | slightly difficult | moderately easy | easy | very easy |
0 | 1 | 2 | 3 | 4 |
- Criterion 2: Is the indicator related to an issue that in the past has been researched? The second criterion highlights the areas where a knowledge gap is identified and where H2020 SPROUT could provide missing insight.
Criterion 2 | Rating Scale | ||||
The indicator is related to an issue that in the past has been researched | extensively | to a large extent | moderately | slightly | not at all |
0 | 1 | 2 | 3 | 4 |
- Criterion 3: Is the indicator directly related to New Mobility Services? This priority criterion reflects one of the main objectives of the SPROUT Project, which is to address the impacts of emerging mobility services.
Criterion 3 | Rating Scale | ||
The indicator is directly related to New Mobility Services | No | Indirectly | Directly |
0 | 1 | 2 |
- Criterion 4: Does the indicator address a potential consequence already identified? In the framework of the scenarios building process, the local stakeholders involved have already identified a list of potential consequences that they expect as a result of the urban mobility transitions. Thus, this prioritization criterion ensures that the pre-identification of these impacts is considered.
Criterion 4 | Rating Scale | |
The indicator addresses a potential consequence already identified | No | Yes |
0 | 1 |
- Criterion 5: Is the indicator already included in the SPROUT Urban Mobility Transition Inventory? In the framework of the project, SPROUT developed an Urban Mobility Transition Inventory through which urban mobility data have been collected by the cities participating in the project in order to gain a clear view on the current mobility situation of each city. With this criterion, priority is given to the indicators that have been assessed which will provide additional opportunities for meaningful results. The local stakeholders will have a clearer picture of the current state of these indicators and a better understanding on what is really measured which will eventually result in more accurate outcomes in forecasting their level of change in the future.
Criterion 5 | Rating Scale | |
The indicator is included in the Urban Mobility Transition Inventory | No | Yes |
0 | 1 |
3.1.3. Development of the “Continuum of Performance” for Each Consequence Indicator
ECONOMY | Expected Impact on (Increase or Decrease): | 1 | 2 | 3 | 4 | Source |
Econ CA 1: The urban transport service structure/mix. | ||||||
Share of public transport (%) | <5% | 5–10% | 10–15% | >15% | [16] | |
Share of car transport (%) | <5% | 5–10% | 10–15% | >15% | [16] | |
Share of micromobility (%) | <5% | 5–10% | 10–15% | >15% | [16] | |
Share of active transport (%) | <5% | 5–10% | 10–15% | >15% | [16] | |
Share of car sharing transport (%) | <5% | 5–10% | 10–15% | >15% | Consensus building among the SPROUT Partners | |
Share of green deliveries (cargo bikes, electric tricycles, green autonomous/automated means) (% of daily deliveries) | <10% | 10–30% | 30–50% | >50% | [17] | |
Share of next hour to same day goods delivery services (% of daily deliveries) | <10% | 10–15% | 15–20% | 20–25% | [18] | |
Number of shared dockless bikes | <30% | 30–60% | 60–100% | >100% | [19,20] | |
Number of shared e-scooters | <30% | 30–60% | 60–100% | >100% | [4,21] | |
Econ CA 2: The urban space allocation | ||||||
Share of urban space for public transport | <5% | 5–10% | 10–15% | >15% | Consensus building among the SPROUT Partners | |
Share of urban space for private/shared cars | <5% | 5–10% | 10–15% | >15% | Consensus building among the SPROUT Partners | |
Share of urban space for cycling/scooter lanes | <5% | 5–10% | 10–15% | >15% | Consensus building among the SPROUT Partners | |
Share of urban space for pedestrian areas | <5% | 5–10% | 10–15% | >15% | [4] | |
Number of autonomous/automated PT services on dedicated lanes | <5% | 5–10% | 10–15% | >15% | Consensus building among the SPROUT Partners | |
Econ CA 3: The urban transport service volumes | ||||||
Average number of daily urban freight trips | <5% | 5–10% | 10–15% | >15% | Consensus building among the SPROUT Partners | |
Average number of vehicles entering the city on a daily basis | <5% | 5–10% | 10–15% | >15% | Consensus building among the SPROUT Partners | |
Econ CA 4: The city’ s urban transport service level | ||||||
Costs of alternative modes of urban passenger transport | <5% | 5–10% | 10–15% | >15% | Consensus building among the SPROUT Partners | |
Share of passengers that use a smart method to pay for or validate a PT ticket (%) | <10% | 10–30% | 30–50% | >50% | [4] | |
Share of PT vehicles that are equipped to provide real-time data that is released to passengers (%) | <10% | 10–30% | 30–50% | >50% | [4] | |
Urban deliveries prices (€/package) | <5% | 5–10% | 10–15% | >15% | Consensus building among the SPROUT Partners | |
Goods delivery frequency (average number of weekly deliveries to consumers) | <10% | 10–15% | 15–20% | 20–25% | [22] | |
Econ CA 5: The urban transport operational costs and required investment costs? | ||||||
Additional private investments required (% of existing annual investment cost) | <5% | 5–10% | 10–15% | >15% | Consensus building among the SPROUT Partners | |
ENVIRONMENT | Env CA1: Climate change | |||||
CO2 equivalent or GHG emissions | <25% | 25–50% | 50–75% | >75% | [23] | |
Env CA2: Air quality index | ||||||
Air quality index | <25% | 25–50% | 50–75% | >75% | [24] | |
SOCIETY | Soc CA1: Employment and social security? | |||||
Gig economy (external contractor) employment (% of total employees) | <10% | 10–30% | 30–50% | >50% | [25] | |
Soc CA2: safety and security? | ||||||
Share of urban mobility accidents involving micromobility means (%) | <5% | 5–10% | 10–15% | >15% | Consensus building among the SPROUT Partners | |
Share of urban mobility accidents involving on-demand bike/scooter deliveries (%) | <5% | 5–10% | 10–15% | >15% | Consensus building among the SPROUT Partners | |
Soc CA3: Access to mobility services? | ||||||
Affordability of using mobility services (citizens’ average annual cost of trips/annual income) | <5% | 5–10% | 10–15% | >15% | Consensus building among the SPROUT Partners | |
Access to mobility services (ease with which all categories of passengers can use public transport) | Minor | Moderate | High | Major | Consensus building among the SPROUT Partners | |
Accessibility for vulnerable groups to mobility services (ease with which vulnerable passengers can use public transport) | Minor | Moderate | High | Major | [26] |
3.1.4. Use of the Framework
3.2. The Case of Padua
3.2.1. Paduas’ Future Mobility Scenarios
3.2.2. Impact Assessment Process Followed by the City
3.2.3. Indicative Results
4. Discussion
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Sustainability Dimension: Economy | ||
Consequence Area Econ CA1: Urban transport service structure and mix: | CA 1 includes all impacts related to the mix of transport modes, the type of vehicles used, and the type of mobility services that operate or will operate in the city’s’ mobility environment. CIs initially identified: Shares of: public transport; private cars; shared cars; cycling/scooters; walking (% of passenger-trips); Number of shared e-scooters; Number of shared dockless bikes; Share of next hour to same day goods delivery services (% of daily deliveries); Share of green deliveries (cargo bikes, electric tricycles, green autonomous/automated means) (% of daily deliveries); Share of electric vehicles (% of fleet driving in the city) | |
Consequence Area Econ CA2: Urban space allocation: | CI2 concerns the allocation of public urban space among the different modes of transport. CIs initially identified: Shares of urban space: public transport; private/shared cars; cycling/scooter lanes; pedestrian areas (% of area); Number of autonomous/automated PT services on dedicated lanes; Number of urban micro-delivery facilities | |
Consequence Area Econ CA3: Urban transport service volumes : | CI3 concerns the volumes of freight and passenger flows, the level of congestion on the streets, the number of movements that are taking place on the streets e.tc. CIs initially identified: Average number of private cars entering, driving through or within the city on a daily basis; Average number of daily urban freight trips; Urban traffic congestion (% of travel/trip time in excess of that normally incurred under light or free-flow traffic conditions) | |
Consequence Area Econ CA4: Urban transport service level: | CA4 concerns the service level of the urban transport services provided. CIs initially identified: Costs of alternative modes of urban passenger transport; Share of passengers that use a smart method to pay for or validate a PT ticket (%); Share of PT vehicles that are equipped to provide real-time data that is released to passengers (%); Urban deliveries prices (€/package); Goods delivery frequency (average number of weekly deliveries to shops and consumers) | |
Consequence Area Econ CA5: Urban transport operational and capital expenditure costs (OpEx & CapEx): | The final consequence area under the Economy dimension concerns the potential impact on the expenses required for developing and operating the current/future urban mobility system. CIs initially identified: Maintenance cost of existing infrastructure (% of existing annual cost); Additional public investments required (% of existing annual investment cost); Additional private investments required (% of existing annual investment cost) | |
Sustainability dimension: Environment | ||
Consequence Area Env CA 1: Climate change | Env CA1 concerns the changes related to climate change and is measured by the level of CO2 emissions or GHG emissions. CI identified: CO2 equivalent or GHG emissions from transport (% of GHG emissions from urban transport) | |
Consequence Area Env CA2: Air quality index | Air quality index: Env CA2 concerns the amount of expected increase or decrease of the Air quality index of a city, as a result of urban mobility. The air quality index (AQI) is a number used to report the quality of the air on any given day. The Index is based on measurement of particulate matter (PM2.5 and PM10), ozone (O3), nitrogen dioxide (NO2), and sulfur dioxide (SO2emissions) [12]. CI identified: European Air Quality Index | |
Consequence Area Env CA 3: Noise | Env CA3 refers to the amount of expected increase or decrease of the Noise emissions in a city, as a result of urban mobility. CI identified: Share of urban population affected by traffic noise, both day and night (% of urban population) | |
Sustainability dimension: Society | ||
Consequence Area Soc CA1: Employment & social security | Soc CA1 concerns mainly the potential changes to the structure, types of employment and social security levels and benefits. CIs identified: Full-time employment in urban transport, for both passenger and freight transport (number of employees); Gig economy (external contractor) employment (% of total employees) | |
Consequence Area Soc CA2: Safety & security | Soc CA2 addresses the safety and security issues that may come up due to changes in the urban environment. CIs identified: Urban mobility accidents per 1,000 inhabitants; Share of urban mobility accidents involving micro-mobility means; Share of urban mobility accidents involving on-demand bike/scooter deliveries | |
Consequence Area Soc CA3: Access to mobility services: | Soc CA3 addresses the potential changes to accessibility issues. CIs identified: Affordability of using mobility services (citizens’ average annual cost of trips/annual income); Access to mobility services (ease with which all categories of passengers can use public transport); Accessibility for vulnerable groups to mobility services (ease with which vulnerable passengers can use public transport) |
Urban Mobility Transition Driver | Level of Change | ||
---|---|---|---|
Scenario 1 | Scenario 2 | Scenario 3 | |
Political agenda and transparency | increase | decrease | increase |
New job opportunities, new business models, transformation of retail, environmental consciousness, next–h to same-day delivery | strong growth | weak growth | Strong growth |
Urban structure | increasing densification | Increasing densification | Increasing sprawl |
Population size and local environmental quality | decrease | decrease | decrease |
Electrification, smart–city technology, automation | Strong growth | Weak growth | Weak growth |
Data and privacy laws, health and safety laws | more regulation | Less regulation | Less regulation |
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Xenou, E.; Ayfantopoulou, G.; Royo, B.; Tori, S.; Mazzarino, M. Methodology for Consequence Analysis of Future Mobility Scenarios: The SPROUT Framework. Future Transp. 2022, 2, 453-466. https://doi.org/10.3390/futuretransp2020025
Xenou E, Ayfantopoulou G, Royo B, Tori S, Mazzarino M. Methodology for Consequence Analysis of Future Mobility Scenarios: The SPROUT Framework. Future Transportation. 2022; 2(2):453-466. https://doi.org/10.3390/futuretransp2020025
Chicago/Turabian StyleXenou, Elpida, Georgia Ayfantopoulou, Beatriz Royo, Sara Tori, and Marco Mazzarino. 2022. "Methodology for Consequence Analysis of Future Mobility Scenarios: The SPROUT Framework" Future Transportation 2, no. 2: 453-466. https://doi.org/10.3390/futuretransp2020025
APA StyleXenou, E., Ayfantopoulou, G., Royo, B., Tori, S., & Mazzarino, M. (2022). Methodology for Consequence Analysis of Future Mobility Scenarios: The SPROUT Framework. Future Transportation, 2(2), 453-466. https://doi.org/10.3390/futuretransp2020025